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Metastatic cancer detection and management with artificial intelligence and augmented reality (Review)
0
Zitationen
11
Autoren
2026
Jahr
Abstract
Metastatic cancer remains a significant global health challenge, contributing to the majority of cancer-related mortality due to late detection, therapeutic resistance and the complexity of disseminated disease. Recent advances in artificial intelligence (AI) and augmented reality (AR) are transforming the landscape of metastatic cancer detection and management. AI-driven tools, including radiomics, deep learning models, and predictive analytics, enhance early identification of metastatic lesions, improve diagnostic accuracy, and support personalized treatment strategies by integrating multimodal clinical, imaging and molecular data. At the same time, AR technologies are increasingly applied in image-guided surgery, real-time tumor visualization and patient education, enabling more precise interventions and improved clinical decision-making. The combined use of AI and AR fosters multidisciplinary collaboration, facilitates comprehensive treatment planning, and may ultimately improve patient outcomes. However, despite these advancements, several challenges limit widespread implementation, including algorithmic bias, variability in data quality, concerns regarding patient privacy, and regulatory and ethical constraints. Furthermore, integration into clinical workflows requires robust validation, clinician training, and standardized guidelines. Future efforts are required to focus on developing transparent, generalizable AI models, strengthening data-security frameworks, and enhancing AR usability to ensure equitable, safe, and effective incorporation of these emerging technologies into metastatic cancer care.
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Autoren
Institutionen
- Deccan College of Medical Sciences(IN)
- Mysore Medical College(IN)
- White River Junction VA Medical Center(US)
- Holy Name Medical Center(US)
- nView Medical (United States)(US)
- Sardar Vallabhbhai National Institute of Technology Surat(IN)
- Ponce Health Sciences University(PR)
- University College of Medical Sciences(IN)
- United Health Services(US)
- Danylo Halytsky Lviv National Medical University(UA)
- King George's Medical University(IN)